Long-Term Interest Clock: Fine-Grained Time Perception in Streaming Recommendation System
Yongchun Zhu, Guanyu Jiang, Jingwu Chen, Feng Zhang, Xiao Yang and, Zuotao Liu

TL;DR
This paper introduces Long-term Interest Clock (LIC), a novel fine-grained time perception method for streaming recommendation systems that adaptively models user interests by considering long-term behaviors, improving recommendation accuracy.
Contribution
LIC is the first to incorporate a fine-grained, adaptive time perception mechanism that leverages long-term user behaviors for streaming recommendations.
Findings
Online A/B tests show +0.122% increase in user active days.
Offline experiments demonstrate consistent performance improvements.
Successfully integrated into Douyin Music App's recommendation system.
Abstract
User interests manifest a dynamic pattern within the course of a day, e.g., a user usually favors soft music at 8 a.m. but may turn to ambient music at 10 p.m. To model dynamic interests in a day, hour embedding is widely used in traditional daily-trained industrial recommendation systems. However, its discreteness can cause periodical online patterns and instability in recent streaming recommendation systems. Recently, Interest Clock has achieved remarkable performance in streaming recommendation systems. Nevertheless, it models users' dynamic interests in a coarse-grained manner, merely encoding users' discrete interests of 24 hours from short-term behaviors. In this paper, we propose a fine-grained method for perceiving time information for streaming recommendation systems, named Long-term Interest Clock (LIC). The key idea of LIC is adaptively calculating current user interests by…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Data Visualization and Analytics · Advanced Database Systems and Queries
MethodsSoftmax · Attention Is All You Need
